Micro Target: MicroRNA Target Prediction and Validation with Experimentally Positive and Negative Examples

Q4 Agricultural and Biological Sciences Plant Cell Biotechnology and Molecular Biology Pub Date : 2024-07-19 DOI:10.56557/pcbmb/2024/v25i9-108783
Shibsankar Das
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Abstract

MicroRNAs (miRNAs) usually controls the gene by binding to complementary sites of 3’ untranslated region of its target genes. Numerous criteria-based and machine learning approaches are available in the literature to predict miRNA–mRNA interactions, but most of them struggle with either high false positive or false negative rates and also don’t show good validation with experimentally validated positive and negative examples. Here we present microTarget, a new computational approach for identifying miRNA target genes which are based on complementarity score, thermodynamic duplex stability and also independent of conservation of target sites in related genomes. In this article, we validated our algorithm using positive and negative data from the literature in various human tissues, and our method outperformed existing computational methods such as miRanda, RNA22, and PITA. Receiver operating characteristic curves (ROC) and Matthew's correlation coefficient (MCC) were calculated using experimentally validated data, and they reveal that microTarget greatly improves miRNA target prediction compared to the three algorithms employed individually. Additionally, an F-score analysis demonstrated that microTarget greatly enhances the relevance of the other techniques. Thus, microTarget is a useful tool for biologists looking for miRNA targets and integrating them into biological contexts.
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微目标:微 RNA 靶标预测及实验阳性和阴性实例验证
微核糖核酸(miRNA)通常通过与其目标基因 3' 非翻译区的互补位点结合来控制基因。文献中有许多基于标准和机器学习的方法来预测 miRNA 与 MRNA 之间的相互作用,但大多数方法都存在高假阳性率或假阴性率的问题,也没有通过实验验证的阳性和阴性实例显示出良好的验证效果。在这里,我们提出了一种新的计算方法 microTarget,用于识别 miRNA 靶基因,它基于互补性得分、热力学双链稳定性,而且与相关基因组中靶位点的保护无关。在本文中,我们利用文献中各种人体组织的阳性和阴性数据验证了我们的算法,我们的方法优于现有的计算方法,如 miRanda、RNA22 和 PITA。利用实验验证的数据计算了接收者操作特征曲线(ROC)和马太相关系数(MCC),结果表明,与单独使用的三种算法相比,microTarget 大大提高了 miRNA 靶点预测能力。此外,F 分数分析表明,microTarget 能大大提高其他技术的相关性。因此,microTarget 是生物学家寻找 miRNA 靶点并将其整合到生物环境中的有用工具。
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来源期刊
Plant Cell Biotechnology and Molecular Biology
Plant Cell Biotechnology and Molecular Biology Agricultural and Biological Sciences-Horticulture
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